Recent advances in multi-objective grey wolf optimizer, its versions and applications

被引:0
作者
Sharif Naser Makhadmeh
Osama Ahmad Alomari
Seyedali Mirjalili
Mohammed Azmi Al-Betar
Ashraf Elnagar
机构
[1] Ajman University,Artificial Intelligence Research Center (AIRC), College of Engineering and Information Technology
[2] University of Sharjah,MLALP Research Group
[3] Torrens University Australia,Centre for Artificial Intelligence Research and Optimisation
[4] Yonsei University,Yonsei Frontier Lab
[5] Al-Balqa Applied University,Department of Information Technology, Al
[6] University of Sharjah,Huson University College
来源
Neural Computing and Applications | 2022年 / 34卷
关键词
Multi-objective grey wolf optimizer; Multi-objective optimization; Metaheuristics;
D O I
暂无
中图分类号
学科分类号
摘要
In this work, a comprehensive review of the multi-objective grey wolf optimizer (MOGWO) is provided. In multi-objective optimization (MO), more than one objective function must be considered at the same time. To deal with such problems, a priori or a posteriori MOGWO variants have been proposed in the literature. In the a priori model, the multi-objective functions are aggregated into a single objective function by a number of weights. In the posterior model, the multi-objective formulation is maintained and MOGWO is employed to estimate the Pareto optimal solutions representing the best trade-offs between the objectives. Due to the successful performance of MOGWO, it has been widely utilized for MO. This review covers the research growth of MOGWO in terms of a number of researches, topics, top researchers, etc. Furthermore, several versions of MOGWO have been introduced and reviewed with applications in diverse fields. This work also provides a critical analysis to show the shortcomings and limitations of using the basic version of MOGWO followed by several future directions. This review paper will be a base paper for any researcher interested to implement MOGWO in its work.
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页码:19723 / 19749
页数:26
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